选择偏差下市场范围公平保险保费的可恢复性

Recoverability of market-wide fair insurance premiums under selection bias

Insurance Mathematics and Economics · 2026
被引 0 · 同刊同年前 6%
人大 BABS 3

中文导读

研究了保险公司组合选择偏差导致的市场范围公平保费与组合范围公平保费不一致的问题,提出利用外部信息恢复目标人群公平保费的方法,并揭示了组合平衡与市场公平之间的监管权衡。

Abstract

Fairness adjustments in insurance pricing are defined relative to a reference population , i.e., to a joint distribution of ( X, D, Y ) where X are rating factors, D protected attributes, and Y is claim amount. Because an insurer’s portfolio is generally a selected subpopulation, portfolio and population reference distributions typically differ, so portfolio-calibrated and population-calibrated fairness adjustments need not coincide. In what follows, we use selection bias as an umbrella term for any discrepancy between an observed sample and its target population. We call portfolio composition bias the insurance-specific form of selection bias induced by the portfolio inclusion mechanism (underwriting/marketing), which makes each insurer’s portfolio a selected subpopulation. Relying on causal inference and a portfolio composition indicator, we characterize how portfolio composition bias affects common premium adjustments (unawareness, discrimination-free pricing, and transport-based corrective pricing), and we provide restrictive conditions under which portfolio and population adjustments coincide. We propose estimators to recover the fairness-adjusted premiums on the regulator-intended target population from selection-biased data, by using externally available information on the population marginal distribution of the prohibited attribute D . We study this scope mismatch from the policyholder’s perspective: we model the market premium faced by a newly entering policyholder (not yet assigned to any portfolio) as a mixture of insurer-specific premiums, weighted by the probability of being assigned to each insurer. Under this view, a pricing rule can satisfy a fairness criterion within each insurer’s portfolio yet produce direct or proxy discrimination in the market when portfolio inclusion depends on X and/or D . Finally, we show that enforcing portfolio-level balance on population-intended fair premiums can reintroduce portfolio composition bias, highlighting a regulatory trade-off between portfolio balancing and market-wide fairness. We focus on recoverability: which population-level fairness targets are identifiable from portfolio data, and what minimal external information is required to recover them.

保险定价公平性选择偏差因果推断监管政策